Literature DB >> 20955281

Updated comorbidity assessments and outcomes in prevalent hemodialysis patients.

Tara I Chang1, Jane Paik, Tom Greene, Dana C Miskulin, Glenn M Chertow.   

Abstract

When evaluating clinical characteristics and outcomes in patients on hemodialysis, the prevalence and severity of comorbidity may change over time. Knowing whether updated assessments of comorbidity enhance predictive power will assist the design of future studies. We conducted a secondary data analysis of 1846 prevalent hemodialysis patients from 15 US clinical centers enrolled in the HEMO study. Our primary explanatory variable was the Index of Coexistent Diseases score, which aggregates comorbidities, as a time-constant and time-varying covariate. Our outcomes of interest were all-cause mortality, time to first hospitalization, and total hospitalizations. We used Cox proportional hazards regression. Accounting for an updated comorbidity assessment over time yielded a more robust association with mortality than accounting for baseline comorbidity alone. The variation explained by time-varying comorbidity assessments on time to death was greater than age, baseline serum albumin, diabetes, or any other covariates. There was a less pronounced advantage of updated comorbidity assessments on determining time to hospitalization. Updated assessments of comorbidity significantly strengthen the ability to predict death in patients on hemodialysis. Future studies in dialysis should invest the necessary resources to include repeated assessments of comorbidity.
© 2010 The Authors. Hemodialysis International © 2010 International Society for Hemodialysis.

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Year:  2010        PMID: 20955281      PMCID: PMC3683592          DOI: 10.1111/j.1542-4758.2010.00468.x

Source DB:  PubMed          Journal:  Hemodial Int        ISSN: 1492-7535            Impact factor:   1.812


  17 in total

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Review 2.  Comorbidity assessment in hemodialysis and peritoneal dialysis using the index of coexistent disease.

Authors:  N V Athienites; D C Miskulin; G Fernandez; S Bunnapradist; G Simon; M Landa; C H Schmid; S Greenfield; A S Levey; K B Meyer
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Journal:  Control Clin Trials       Date:  2000-10

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Journal:  Am J Kidney Dis       Date:  2002-07       Impact factor: 8.860

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